Gaine Technology
Whitepaper

Weaving Operational Excellence and New Insights with Next-Gen Data Fabric

Data fabric is an emerging architecture well-suited to tackle the pervasive data challenges in the healthcare industry. With disparate data sources across care delivery, payers, and life science enterprises, the landscape becomes highly fragmented, complicating efforts to achieve interoperability.

This paper outlines the opportunities and best practices for implementing data fabrics, along with the limitations, as well as how the Coperor™ Health Data Management Platform (HDMP) prepares the capabilities of a data fabric to be enterprise-ready, positioning your interoperability strategies for success.

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The potential of data fabric for healthcare organizations is immense, and the allure of new technologies supporting this architecture is equally captivating. However, despite the hype around knowledge graphs, active metadata, and AI-driven discovery, those considering implementing a data fabric should not ignore the intractable and foundational standards that MDM technologies and cross-domain common data models provide, and how they should be tightly integrated with any Health Grade data fabric. Download the e-book to discover:

  • The importance of interoperability and intra-operability to confidently gain control over your own data assets before sharing it across the ecosystem
  • The need for Opt-in Synch to allow endpoints to subscribe to just the data they need without the necessity to align with all the data
  • Accelerating data fabric adoption with an agile approach to continually validate meta data and documentation against actual data to identify gaps and blind spots
  • Anticipating and solving the obstacles to architecting data fabrics
  • How to position Coperor in a data fabric / mesh strategy
  • Coperor’s role in bridging commercial data and operational context
  • And more!
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